Multiple resolutions arise across a range of explanatory features due to domain-specific structures, leading to the formation of feature groups. It follows that the simultaneous detection of significant features and groups aimed at a specific response with false discovery rate (FDR) control stands as a crucial issue, such as the spatial genome-wide association studies. Nevertheless, existing detection methods with multilayer FDR control generally rely on valid p-values or knockoff statistics, which can be not flexible, powerful and stable in several settings. To fix this issue effectively, this article develops a novel method of Stabilized Flexible E-Filter Procedure (SFEFP), by constructing unified generalized e-values, leveraging a generalized e-filter, and adopting a stabilization treatment with power enhancement. This method flexibly incorporates diverse base detection procedures at different resolutions to provide consistent, powerful, and stable results, while controlling FDR at multiple resolutions simultaneously. Statistical properties of multilayer filtering procedure encompassing one-bit property, multilayer FDR control, and stability guarantee are established. We also develop several examples for SFEFP such as the eDS-filter. Simulation studies and the analysis of HIV mutation data demonstrate the efficacy of SFEFP.
翻译:由于特定领域结构的存在,解释性特征在不同分辨率上形成特征组,因此,在控制错误发现率(FDR)的前提下,同时检测针对特定响应的显著特征和特征组成为一个关键问题,例如空间全基因组关联研究。然而,现有的多层FDR控制检测方法通常依赖于有效的p值或knockoff统计量,这在某些场景下可能不够灵活、强大和稳定。为有效解决此问题,本文通过构建统一的广义e值、利用广义e过滤器以及采用具有功效增强的稳定化处理,开发了一种新颖的稳定灵活e过滤器程序(SFEFP)。该方法灵活地整合了不同分辨率下的多种基础检测程序,以提供一致、强大且稳定的结果,同时实现多分辨率FDR的同步控制。本文建立了多层过滤程序的统计性质,包括单比特性质、多层FDR控制及稳定性保证。我们还为SFEFP开发了若干实例,例如eDS过滤器。模拟研究及HIV突变数据分析验证了SFEFP的有效性。